PropertyValue
?:abstract
  • PURPOSE Because of the widespread use of CT in the diagnosis of COVID 19, indeterminate presentations such as single, few or unilateral lesions amount to a considerable number. We aimed to develop a new classification and structured reporting system on CT imaging (COVID-19 S) that would facilitate the diagnosis of COVID-19 in the most accurate way. METHODS Our retrospective cohort included 803 patients with a chest CT scan upon suspicion of COVID 19. The patients\' history, physical examination, CT findings, RT PCR, and other laboratory test results were reviewed, and a final diagnosis was made as COVID 19 or non-COVID 19. Chest CT scans were classified according to the COVID 19 S CT diagnosis criteria. Cohen\'s kappa analysis was used. RESULTS Final clinical diagnosis was COVID-19 in 98 patients (12%). According to the COVID-19 S CT diagnosis criteria, the number of patients in the normal, compatible with COVID 19, indeterminate and alternative diagnosis groups were 581 (72.3%), 97 (12.1%), 16 (2.0%) and 109 (13.6%). When the indeterminate group was combined with the group compatible with COVID 19, the sensitivity and specificity of COVID-19 S were 99.0% and 87.1%, with 85.8% positive predictive value (PPV) and 99.1% negative predictive value (NPV). When the indeterminate group was combined with the alternative diagnosis group, the sensitivity and specificity of COVID-19 S were 93.9% and 96.0%, with 94.8% PPV and 95.2% NPV. CONCLUSION COVID-19 S CT classification system may meet the needs of radiologists in distinguishing COVID-19 from pneumonia of other etiologies and help optimize patient management and disease control in this pandemic by the use of structured reporting.
?:creator
?:doi
?:doi
  • 10.5152/dir.2020.20351
?:journal
  • Diagnostic_and_interventional_radiology
?:license
  • unk
?:pmid
?:pmid
  • 32558646.0
?:publication_isRelatedTo_Disease
?:source
  • Medline
?:title
  • COVID-19 S: A new proposal for diagnosis and structured reporting of COVID-19 on computed tomography imaging.
?:type
?:year
  • 2020-06-19

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